Probabilistically safe controllers based on control barrier functions and scenario model predictive control
Control barrier functions (CBFs) offer an efficient framework for designing real-time safe controllers. However, CBF-based controllers can be short-sighted, resulting in poor performance, a behaviour which is aggravated in uncertain conditions. This motivated research on safety filters based on mode...
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Zusammenfassung: | Control barrier functions (CBFs) offer an efficient framework for designing
real-time safe controllers. However, CBF-based controllers can be
short-sighted, resulting in poor performance, a behaviour which is aggravated
in uncertain conditions. This motivated research on safety filters based on
model predictive control (MPC) and its stochastic variant. MPC deals with
safety constraints in a direct manner, however, its computational demands grow
with the prediction horizon length. We propose a safety formulation that solves
a finite horizon optimization problem at each time instance like MPC, but
rather than explicitly imposing constraints along the prediction horizon, we
enforce probabilistic safety constraints by means of CBFs only at the first
step of the horizon. The probabilistic CBF constraints are transformed in a
finite number of deterministic CBF constraints via the scenario based
methodology. Capitalizing on results on scenario based MPC, we provide
distribution-free, \emph{a priori} guarantees on the system's closed loop
expected safety violation frequency. We demonstrate our results through a case
study on unmanned aerial vehicle collision-free position swapping, and provide
a numerical comparison with recent stochastic CBF formulations. |
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DOI: | 10.48550/arxiv.2409.06834 |